Deep and Probabilistic Solar Irradiance Forecast at the Arctic Circle
Niklas Erdmann, Lars {\O}. Bentsen, Roy Stenbro, Heine N. Riise,, Narada Warakagoda, Paal Engelstad

TL;DR
This paper develops and compares deep learning models, specifically LSTMs with probabilistic approaches, for accurate and uncertainty-aware solar irradiance forecasting near the Arctic Circle, demonstrating improved multi-horizon predictions.
Contribution
It introduces probabilistic LSTM models with advanced distribution fitting for solar irradiance forecasting in Arctic conditions, enhancing both accuracy and uncertainty quantification.
Findings
LSTMs outperform simple models and MLP in multi-horizon forecasts
Probabilistic models provide well-calibrated uncertainty estimates
Trade-off observed between point prediction accuracy and uncertainty calibration
Abstract
Solar irradiance forecasts can be dynamic and unreliable due to changing weather conditions. Near the Arctic circle, this also translates into a distinct set of further challenges. This work is forecasting solar irradiance with Norwegian data using variations of Long-Short-Term Memory units (LSTMs). In order to gain more trustworthiness of results, the probabilistic approaches Quantile Regression (QR) and Maximum Likelihood (MLE) are optimized on top of the LSTMs, providing measures of uncertainty for the results. MLE is further extended by using a Johnson's SU distribution, a Johnson's SB distribution, and a Weibull distribution in addition to a normal Gaussian to model parameters. Contrary to a Gaussian, Weibull, Johnson's SU and Johnson's SB can return skewed distributions, enabling it to fit the non-normal solar irradiance distribution more optimally. The LSTMs are compared against…
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Taxonomy
TopicsAtmospheric and Environmental Gas Dynamics · Atmospheric Ozone and Climate
MethodsSparse Evolutionary Training · Sigmoid Activation · Tanh Activation · Long Short-Term Memory
